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A novel hybrid whale optimization algorithm with flower pollination algorithm for feature selection: Case study Email spam detection

机译:具有特征选择的新型混合鲸优化算法:案例研究电子邮件垃圾邮件检测

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摘要

Feature selection (FS) in data mining is one of the most challenging and most important activities in pattern recognition. In this article, a new hybrid model of whale optimization algorithm (WOA) and flower pollination algorithm (FPA) is presented for the problem of FS based on the concept of opposition-based learning (OBL) which name is HWOAFPA. The procedure is that the WOA is run first and at the same time during the run, the WOA population is changed by the OBL. And, to increase the accuracy and speed of convergence, it is used as the initial population of FPA. To evaluate the performance of the proposed method, experiments were carried out in two steps. The experiments were performed on 10 datasets from the UCI data repository and Email spam detection datasets. The results obtained from the first step showed that the proposed method was more successful in terms of the average size of selection and classification accuracy than other basic metaheuristic algorithms. In addition, the results from the second step showed that the proposed method which was a run on the Email spam dataset performed much more accurately than other similar algorithms in terms of accuracy of Email spam detection.
机译:数据挖掘的特征选择(FS)是模式识别最具挑战性和最重要的活动之一。在这篇文章中,鲸鱼优化算法(WOA)和花授粉算法(FPA)的一种新的混合模型,提出了FS的基础上基于对立学习(OBL)的概念,它的名字是HWOAFPA问题。该程序是,WOA是第一次运行,并在运行过程中的同时,WOA人口由OBL改变。而且,为了提高收敛的精度和速度,它被用作FPA的初始群体。为了评估该方法的性能,实验分两步进行。该实验是在从UCI数据仓库和电子邮件的垃圾邮件检测数据集10个集执行。从第一步骤中得到的结果表明,所提出的方法是在选择和分类精度比其它基本元启发式算法的平均尺寸方面更加成功。此外,从所述第二步骤中的结果表明,所提出的方法,其是在垃圾电子邮件数据集运行比在电子邮件的垃圾邮件检测的准确性方面的其他类似算法进行更准确。

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